Munich Personal RePEc Archive
Does Islamic bank financing lead to
economic growth? An empirical analysis
for Malaysia
Bm, Hakim and Uddin, Md Akther
INCEIF, INCEIF
4 June 2016
Online at https://mpra.ub.uni-muenchen.de/69075/
MPRA Paper No. 69075, posted 07 Jun 2016 14:50 UTC
Does Islamic bank financing lead to economic growth?
An empirical analysis for Malaysia
1Md Hakim Ali,2Md Akther Uddin
INCEIF,Malaysia,INCEIF,Malaysia
Does Islamic bank financing lead to economic growth? An empirical analysis for Malaysia
Abstract:
The purpose of this paper is to empirically examine the impact of the Islamic Bank Financing on
Malaysia’s economic growth. Using Malaysia as a case in point, this paper employs Advance time-series
ARDL bound testing technique, Vector error correction model (VECM) and variance decompositions
(VDCs) to explore short-and long-run relationship and causal relationships between the development of
Islamic banks and the economic growth using Islamic bank financing to the private sectors, gross
domestic product as a proxy of economic growth, Gross fixed capital formation and the consumer price
index variables. The paper documents significant role played by the economic growth to the development
of Islamic Banks in Malaysia, supporting the growth-Islamic finance led hypothesis or the demand
following view. The policy implication of this paper is to improve the efficiency of Malaysian Islamic
banks as financial intermediaries that facilitate the capital accumulation and the economic growth;
moreover the paper suggests strengthening the weight of the profit loss sharing instruments in the loan
portfolios of the Malaysian Islamic banks.
Key words: Supply leading, Demand following, Causality, Islamic banks, Malaysia.
1Md Hakim Ali, Msc Student at INCEIF, Lorong Universiti A, 59100, Kuala Lumpur, Malaysia. Emil:
2Md Akther Uddin, Msc Student at INCEIF, Lorong Universiti A, 59100, Kuala Lumpur, Malaysia
Table of Contents
Introduction ................................................................................................................................................... 4
Literature review: .......................................................................................................................................... 5
The Islamic finance-economic growth nexus ........................................................................................... 7
Methodology and Result: .............................................................................................................................. 7
Unit root test ............................................................................................................................................. 9
ROBUSTNESS OF THE RESULT: ....................................................................................................... 12
IMPULSE RESPONSE FUNCTIONS ................................................................................................... 14
POLICY IMPLICATIONS: ........................................................................................................................ 16
Conclusion: ................................................................................................................................................. 16
REFERENCE .............................................................................................................................................. 17
Table 1: Result of ADF, PP and KPSS test: ................................................................................................. 9
Table 2: VAR lag order selection .............................................................................................................. 10
Table 3: Engle-Granger (E-G) Test ........................................................................................................... 10
Table 4:ARDL Bound Test For Existence Of A Level Relationship ......................................................... 10
Table 5:F-Statistics For Testing The Existence Of Long Run Relationship (Variable Addition Test) ...... 11
Table 6:ARDL Bound Test For Existence Of A Level Relationship ......................................................... 11
Table 7: Result Of Estimated Ling –Run Coefficient Using The ARDL Approach . Error! Bookmark not
defined.
Table 8: Error Correction Model Reprsentation ......................................................................................... 12
Table 9: Variance Decomposition Normalised ........................................................................................... 13
Introduction In Malaysia the demand for shari’ah-compliant financial products and services particularly for banking
products and services accelerated in 1980 as the local Muslim community continued to demand for
alternatives to the interest-based conventional banking services. In the view of the pressuring demand,in
1982,a national steering committee was established to study the possibility of setting up a full-fledged
Islamic bank in the country.In the following year, the first Islamic bank in Malaysia,namely,Bank Islam
Malaysia Berhad(BIMB)was set up and commenced its operation on July 1,1983 supported by the Islamic
Banking Act (IBA) 1983 being enacted in the same year. BIMB was given an initial seed capital of
RM580 million and a grace period of 10 years, whereby the government sheltered the bank from any form
of competition during its infancy stage.
Later on “Islamic banking window” was introduced, which allowed interested conventional banking to use their existing infrastructure to offer the Islamic banking products. Through this concept bank
customer could opt for either the conventional and Islamic banking products. The window concept also
well received by the conventional banks as they were able to leverage on their existing reputation and
network infrastructure to capture new market segments and diversify their customer base. More
importantly the wide banking networking also contributed toward higher consumer acceptance of the
Islamic banking products and services.
After the hit by the Asian financial crisis in 1997 and 1998, Malaysia saw another revolution in Islamic
banking by introducing a full-fledged Islamic Bank muamalat emerged from Bumiputra berhad, which
was the largest domestic based Islamic bank. In the following years, particularly in the post 2005,
Malaysia central bank, Bank Negara Malaysia (BNM), allowed foreign Islamic banks to operate in
Malaysia to further exert positive competitive pressure to the local Islamic banks, the most rapid foreign
bank’s entry took place in 2005 and 2006, with several local and foreign conventional bank setting up
full-fledged Islamic subsidiaries in Malaysia. Now a day, Islamic financial system is growing side by side
with the conventional financial system in the Malaysian dual financial system.
With the growing presence of Islamic banking and finance industry in Malaysia, it is high time to explore
the relationship and effect between the industries and Malaysian economy. The industry rapid growth and
the investor’s growing interest in the industry induce to the revaluation of the contribution of the Islamic
financial industry to the overall economy. The industry players and the policy makers are seeking after
information on the relevance and importance of Islamic financial industry in contributing toward the
country’s economic growth so that to figure out the future direction for healthy growth of the industry.
Inherently, Islamic banking and finance has the characteristics that contribute positively to the economic
growth. The profit loss sharing nature of Islamic financial transactions naturally promotes stronger
linkage between financial sector and real sector. The compliance of shariah prohibition of Riba (interest),
Gharar (excessive uncertainty), Maysir (gambling) serves as a built in check and balance mechanism and
establish the socio economic justice and reduces the possibility of financial instability of the overall
economy and financial system.
Economic development accelerates the productive capability of an economy by using available resources
to reduce risks, and remove obstacles which might lower the cost and impede investment, whereby the
effective and efficient banking system promotes economic growth and development throw financial
intermediation. Since the inception of Islamic finance in the global financial system it has been proved to
be a viable and efficient mode of financing. Likewise its conventional counterpart is also contributing to
economic development. The good performance and tremendous growth of Islamic finance have shown its
feasibility, in country such as Malaysia, Islamic finance has become an integral part of the financial
system, hence its crucial to verify its contribution to the economic development of a country.
This paper aims to contribute toward enriching the empirical research in the area of Islamic finance-
growth nexus in Malaysian case. In an Endeavour to assess the contribution of Islamic finance to
economic growth in the Malaysian context, this study focuses on the flowing research questions:
To what extent do Islamic bank financial institutions contribute to economic growth in Malaysia?
What is the nature of the relationship between Islamic bank financial institutions and economic
growth in Malaysia?
Does Islamic bank financial institution have significant relationship with Malaysian economic
growth in the short and the long run?
The paper is organized as follows. Section II reviews on the relevant theoretical and empirical
literature, Methodology and result are discussed in section III. The empirical results and
discussions are presented in section iv, the last section ends with policy implications of the paper
and the concluding remarks.
Literature review:
Financial sector and economic growth
Economists hold different perspective on the theoretical link between financial development and
economic growth. Schumpeter (1911), says that the services provided by financial intermediaries are
essential pushing factors for innovation and growth. Well developed financial systems channel financial
resources to the most productive use. On the other hand Robinson (1952) argues that finance does not
exert a causal impact on growth. Rather he argues saying that financial development follows economic
growth as a result of higher demand for financial services. When an economy grows, more financial
institutions, financial products and services emerge in the markets in response to higher demand of
financial services.
The literature in this area of study is generally more supportive of the argument put forwarded by
Schumpeter (1911). This line of argument was later formalized by Gold smith (1969), Shaw (1973), and
McKinnon (1973), focuses the connection between “a country’s financial super structure and its real infrastructure”. Statement by Goldsmith the financial superstructure of an economy accelerates economic growth and improves economic performance to the extent that it facilitates the channeling of fund to the
best users, i.e., to the place of an economic system where the fund yields the highest return. The
endogenous growth literature is in line with this argument that financial development has a positive
impact on the steady state growth (see Bencivenga and Smith, 1991; Bencivenga et al 1995, and
Greenwood and Jovanovice, 1990 among others).
Beck and Levine (2004) finds the conclusive evidence on the important positive role for financial
development in the process of economic development using GMM techniques on the economy of 40
countries over a period of 1976-1998 where stock markets and banks are adopted as the indicators of
financial sector development and Gross domestic product (GDP) being used as a measure of economic
growth. Beck et al (2000) investigates the importance of financial sector development on the economic
growth for 77 countries over a period of 1960-1995 and finds that financial sector has a significant
positive impact on the total factor of productivity growth which subsequently gives a positive impact on
the overall GDP growth. Their conclusion is consistent with Schumpeter’s view that the financial development promotes economic growth. This conclusion is also supported by the works of De Gregorio
and Guidotti (1995) and Caldero ´n and Li u (2002). M. Masih et al (2009) finds supply leading
relationship rather than demand following using Saudi Arabia as a case study.
The study by Mishkin (2006) finds that indirect finance, which involves the financial activities of
financial intermediaries, is many times more important than direct finance, in which businesses raise
funds directly from lenders in financial markets towards economic growth. .For the period of 1970-1996,
for example, sources of external funds of non-financial businesses in Japan were 85 percent from bank
loans and 15 percent from financial markets while in Germany were almost 80 percent from bank loans
and the rest from financial markets
Time series studies confirm that finance predicts the growth (Neusser and Kugler 1998, Rousseau and
wachtel 1998). One drawback of these papers is that financial intermediary development may be a leading
indicator of economic growth but not an underlying cause of economic growth. Recent industry –level,
firm level and event study investigations however suggest that the level of financial intermediary
development has a large casual impact on real per capita GDP growth (Rajan and Zingales,1998,
.Demirguk Kunt and Maksimovic, 1998, .Jayanatne and Strahan, 1996)
The study by Barjas, Adolfo,Ralph Chami, and Seyed Reza Yousefi,(2013) explores three dimensions of
possible heterogeneity in the finance growth nexus: across regions, between oil and non-oil exporters, and
across income levels. Their dataset encompasses the 1975–2005 periods and takes non-overlapping five-
year averages of all variables to smooth out short-term fluctuations in growth rates and to reduce the
potential bias arising from having a large number of time observations in dynamic panel estimation. The
sample includes up to 146 countries included in some regressions, grouped by income level according to
the IMF classification, and by oil and non-oil exporters depending on the share of oil in total GDP, which
is also included in some regressions as the measure of oil dependence, they find that Middle East and
North Africa (MENA) countries banking sector depth produces a lower growth impact than in the rest of
the world, while in Europe and Central Asia the impact is greater, the growth impact of banking depth is
weaker for oil exporters in general, and is progressively weaker as the degree of oil dependence increases.
And finally they find indeed, the finance-growth nexus is weaker for Low Income Countries (LICs) as a
group, and that it increases continuously with income level.
However, not all researchers are convinced about the importance of financial system in the growth
process. Lucas (1988) argues that economists tend to over-emphasize the role of financial factors in the
process of growth. Development of the financial markets may well turn out to be an impediment to
economic growth when it induces volatility and discourages risk-averse investors from investing (Singh,
1997). Apart from this, it is also well mentioning that the introduction of certain financial tools that
allows individuals to hedge against risks may lead to a reduction of the propensity of savings and hence
lowers economic growth (Mauro, 1995)
The Islamic finance-economic growth nexus
There are very few studies providing the empirical relationship between the Islamic financial sector and
the real economic sector. The relatively new Islamic finance and banking industry compared to the
conventional banking industry has limited empirical assessment on the issue of whether Islamic banking
industry leads to economic growth. Goaied and Sassi (2010) explore the effect of Islamic banking sector
on economic growth of 16 countries in the Middle-East and North Africa (MENA) region in the period of
1962-2006 using the GMM. The study uses credit advanced to private sector by the Islamic banks to
represent the financial intermediation. The study finds no significant relationship between banking
development and economic growth, even in some instances the relationship was significantly negative
especially for the case of oil exporting countries. Barjas et al (2010) also found almost similar result, they
added that the beneficial effect of financial deepening on economic growth differs between oil exporting
and non-oil exporting countries, its considerably smaller in oil exporting countries compared to the rest of
the world.
However, in the case of Malaysia Furqani and Mulyany (2009) scrutinized the relationship between
Islamic banking and economic growth where the co-integartion test and vector error correction model
were used on quarterly data from1997 to 2004. The study finds a significant long-run bi-directional
relationship between Islamic and fixed investment, while GDP Granger causes growth of Islamic banks.
The variables used in their study are total Islamic bank financing as an indicator of Islamic banking
intermediation, while GDP per capita, fixed investment and trade are taken as indicators for real
economic activities. The finding of this study is in line with the theoretical postulation that Islamic banks
accelerate investment which leads to development of the real economy given the investment productive.
The study by Abduh and Omar (2012) finds the empirical support of a bi-directional relationship between
Islamic financial development and economic growth using bound testing approach of co-integration and
error correction models, developed within ARDL framework on quarterly data from 2003 to 2010 in the
case of Indonesia
However Fasih (2012) suggests that Islamic banking is capable of addressing the issue of wide income
inequality in India by ensuring inclusive economic growth. The PLS nature of Islamic banks would help
to solve the problem of the majority of Indian having inaccessibility to credit like farmers and the SMEs.
In addition promoting Islamic banking would attract investment from the rich Gulf countries which in
turn contributes to real economic activities in India.
In this paper, an attempt has been conducted to explore the relation between Islamic banking development
and economic growth of Malaysia over the periods of 2006–2014.
Methodology and Result:
The data used here are quarterly data from 2006Q1 to 2014Q4, a total of 33 observations were obtained.
Due to the Quarterly data unavailability two data sources been used , GDP, and Islamic Bank financing
data from Bank Negara Malaysia (BNM) monthly statistical bulletin, and gross fix capital formation, and
Consumer price level from data stream. We use four variables based on our previous studies and our
research objective, Although the focus of this article is on the lead-lag relationship between Islamic bank
development and economic growth, these two variables interact through some other ‘control’ variables. The theoretical literature is not very clear about the transmission channel between ‘finance’ and ‘growth’
but it is generally postulated that ‘finance’ affects ‘growth’ through investments. We try to proxy the investment channel by gross fixed capital formation (GFCF)
IBF= Islamic banks financing to the private sector as a proxy for Islamic bank development.
GDP= Gross domestic product as a proxy for growth
GFC=Gross fixed capital formation
CPI=Consumer price index
The study applies ARDL approach proposed by Pesaran and Pesaran (1997), and Pesaran, Shin, and
Smith (2001), which is commonly used to investigate the long-run links between variables. In comparison
with other known cointegration methods, the ARDL approach allows different optimal lags for the
variables, and is a very useful tool since it substantially improves the small-sample properties of the
estimates regardless of the nature of the time series, stationary or not. This contrasts with the conventional
methods that require unit root pre-testing before carrying out the cointegration tests. Another feature of
substantial importance of the ARDL approach is that it can be applied even for small sample size, and
allows getting simultaneously the short-term and long-term estimates. We first conduct ADF, PP, KPSS
tests to examine the stationarity properties of the series. Secondly, we perform diagnostic tests to ensure
the validity of the regressions used for the implementation of the bounds test approach of cointegration
among the variables. Thirdly, given the supported cointegrating relationships, we compute the long- and
short-run elasticity, assess the causality direction between variables, and check the return to the long-run
equilibrium based on the estimated error correction model. Finally, given the obtained results of the
ARDL approach, we also employ other suitable econometric methods, namely variance decomposition
and impulse response to ensure that our findings are not contingent upon only one approach.
The ARDL model specification of the functional relationship between GDP, Islamic bank financing,
gross fixed capital formation, and inflation can be estimated below:
𝐷𝐺𝐷𝑃𝑡 = 𝑎0 + ∑ 𝑏1𝐷𝐺𝐷𝑃𝑡−𝑖𝑘𝑖=1 + ∑ 𝑏2 𝐷𝐼𝐵𝐹𝑡−𝑖 𝑘
𝑖=0+ ∑ 𝑏3𝐷𝐺𝐹𝐶𝑡−𝑖 +𝑘𝑖=0 ∑ 𝑏4𝐷𝐶𝑃𝐼𝑡−𝑖 + 𝑏5𝐿𝐺𝐷𝑃𝑡−𝑖 + 𝑏6𝐿𝐼𝐵𝐹𝑡−𝑖 + 𝑏7𝐿𝐺𝐹𝐶𝑡−𝑖𝑘
𝑖−0+ 𝑏8𝐿𝐶𝑃𝐼𝑡−𝑖
ARDL bounds testing permit us to take into consideration I(0) and I(1) variables together. The null
hypothesis of the non existence of a long run relationship against the alternative hypothesis of there is
cointegration. In equation, k is lag criteria.
For the existence of long run
𝐿𝐺𝐷𝑃𝑡 = 𝑎0 + ∑ 𝑏1𝐿𝐺𝐷𝑃𝑡−𝑖 + ∑ 𝑏2𝐿𝐼𝐵𝐹𝑡−𝑖 +𝑘𝑖=0
𝑘𝑖=1 ∑ 𝑏3𝐿𝐺𝐹𝐶𝑡−𝑖𝑘
𝑖=0 ∑ 𝑏4𝐿𝐶𝑃𝐼𝑡−𝑖 + 𝜇𝑡𝑘𝑖=0
Error correction term is used in the ARDL short run model. The short run dynamic model can be
presented as follows:
𝐷𝐺𝐷𝑃𝑡 = 𝑎0 + ∑ 𝑏1𝐷𝐺𝐷𝑃𝑡−𝑖 + ∑ 𝑏2𝐷𝐼𝐵𝐹𝑡−𝑖𝑘𝑖=0 + ∑ 𝑏3𝐷𝐺𝐹𝐶𝑡−𝑖 +𝑘
𝑖=0 ∑ 𝑏4𝐷𝐶𝑃𝐼𝑡−𝑖 + 𝑏5𝐸𝐶𝑇𝑡−𝑖𝑘𝑖=0
𝑘𝑖−1
Where ECT is lagged error correction term.
Unit root test
A stationary series has a mean(to which it tends to return), a finite variance, shocks are transitory,
autocorrelation coefficients die out as the number of lags grows, whereas a non-stationary series has an
infinite variance (it grows over time), shocks are permanent(on the series) and its autocorrelations tend to
be unity. If the series is ‘stationary’, the demand-side short run macroeconomic stabilization policies and
financial development are likely to be effective and promote economic growth but if the series is ‘non stationary’, the supply-side policies are more likely to be effective in promoting growth with the
accumulation of financial and human capital in the long run.
Table 1: Result of ADF, PP and KPSS test:
Variables ADF PP KPSS
Level Form T-stat CV Decision T-stat CV Decision T-stat CV Decision
LGDP 1.9992 3.5867 NST 2.9544 3.5341 NST .15540 .23265 ST
LIBF 3.8643 3.5867
ST 1.2065 3.5341 NST .14922 .23265 ST
LGFC 3.2549 3.5867 NST 2.5440 3.5341 NST .13216 .23265 ST
LCPI 2.8792 3.5867 NST 1.6795 3.5341 NST .14254 .23265 ST
ADF PP KPSS
Differenced
Form
T- stat CV Decision T-stat CV Decision T-stat CV Decision
DGDP 3.5195 2.9798 ST 8.0614 2.960
5
ST .30250 .3804
4
ST
DIBF 4.5990 2.9798 ST 5.0912 2.960
5
ST .31091 .3804
4
ST
DGFC 2.5533 2.9798 NST 8.9383 2.960
5
ST .14090 .3804
4
ST
DCPI 3.6545 2.9798 ST 5.5871 2.960
5
ST .32627 .3804
4
ST
On the above mentioned results of unit root test we can see that it varies from one test to another test. If
we analyze the results of unit root tests of all variables in the level and differenced form, we observe that
Islamic bank financing shows different result from ADF and PP test. This result gives support to the use
of ARDL bounds approach to determine the long-run relationships among the variables.
As the results of unit root test are not consistent we decided to use ARDL technique to test the long run
relationship among the variables. Before proceeding with the test of cointegration, we try to determine the
order of the vector auto regression (VAR), that is, the number of lags to be used.
Table 2: VAR lag order selection
Selection Criteria
AIC SBC
Optimal order of the VAR 4 1
There are conflicts between recommendation of AIC and SBC. This can interpreted as inherent nature of
time series data of our study. Havng chosen the order of the VAR it is prudent to examine the residuals of
individual equation for serial correlation (pesaran et al, 2001). We tried 3 VAR order keeping in mind
both Auto correlation and robustness.
Test of Cointegration:
An evidence of cointegration implies that the relationship among the variables is not spurious, i.e. there is
a theoretical relationship among the variables and that they are in equilibrium in the long run.
Table 3: Engle-Granger (E-G) Test
T-Statistics Critical value
Order of the ADF test 2.1886 4.4962
As depicted in the above table the critical value is higher than that-statistics. So, we cannot reject the null
that the residuals are non stationary. Statistically, the above results indicate that the variables we have
chosen, in some combination, result in not a stationary error term. As it is non stationary that indicates
that there is no cointegration. These initial results are not intuitively appealing, to our mind. On the other
hand that if the variables are not found to be cointegrated, they may be fractionally cointegrated. So, we
have decided to go for Johansen cointegration test in the following s
Table 4:ARDL Bound Test For Existence Of A Level Relationship
Criteria Number of co-integrating vectors
Maximal Eigenvalue 1
Trace 1
SBC 1
AIC 4
HQC 4
The above co-integration results implies that each variables contain information for the prediction of other
variables i.e. in our research setting, we can determine the predicting variable for growth as we are
examining how Islamic banks affect growth in the short and long run. However, these results are bit of
conflicting; it also conflicts with Engle – Granger. As these approaches have many limitations that are
taken care by ARDL. For that we decided to go for ARDL approach for testing co integration among
variables.
Table 5:F-Statistics For Testing The Existence Of Long Run Relationship (Variable Addition Test)
Variables F-statistics CV lower CV upper
DGDP .40374 2.425 3.574
DIBF 2.7536* 2.425 3.574
DGFC .56238 2.425 3.574
DCPI 3.7273* 2.425 3.574 The critical values are taken from Pesaran et al. (2001), unrestricted intercept and no trend with four regressor.*denotes rejecting the null at10
percent level.
Table above shows the calculated F statistics for dependent variable Islamic bank financing is 2.7536,
which is in between lower and higher bound at the 10% significance level. This result is inconclusive
meaning regarding the short run relationship among the Islamic banks and the economic growth of
Malaysia. this could be considered as a finding of the real fact that Islamic banks don’t involve them in the long run financing activities.
Table 6:ARDL Bound Test For Existence Of A Level Relationship
Dependent
Variables
F-statistics CV lower value CV higher value
LGDP 2.2900 2.42 3.57
LIBF 3.3033* 2.42 3.57
LGFC 1.8473 2.42 3.57
LCPI 1.0153 2.42 3.57 The critical values are taken from Pesaran et al. (2001), unrestricted intercept and no trend with four regressor.*denotes rejecting the null at10
percent level.
The calculated F statistic 3.30 which is in between lower and higher bound and more close to higher
bound, on the other hand SBC criteria for Islamic banks shows exceeding the upper bound which
indicates that the null hypothesis of no co-integrating long-run relationship can be rejected. The economic
implication of this result is the variables economic growth, Islamic bank financing, gross fixed capital
formation and consumer price level are moving together in a particular direction in the long run, similar
result found by (Hafas Furqani and Ratna Mulyany, 2009) These results reveal that a long-run
relationship exists between the focus and controlling variables in Malaysia.
This by itself is a significant finding in view of the fact that the long run relationship between the
variables is demonstrated here avoiding the pre-test biases involved in the unit root tests and c-integration
tests required in the standard co-integration procedure. The evidence of long run relationship rules out the
possibility of any spurious relationship existing between the variables. In other words, there is a
theoretical relationship existing between the variables.
Table 7: Error Correction Model Reprsentation
Variables Coefficient Standard Error P-value
ecm(-1) dLGDP -.32900 .32115 [.318]
ecm(-1) dLIBF -.13105 * .049297 [.013]
ecm(-1) dLGFC -.34811 .23819 [.160]
ecm(-1) dLCPI -.17132 .12263 [.176]
As discussed earlier, cointegration tells us that there is a long run relationship between the variables.
However, there could be a short-run deviation from the long-run equilibrium. Cointegration does not
unfold the process of short-run adjustment to bring about the long-run equilibrium. For understanding that
adjustment process we need to go to the error-correction model. The T-ratio or the p- value of the error-
correction coefficient indicates whether the deviation from equilibrium (represented by the error-
correction term, ‘ecm’) has a significant feedback effect or not on the dependent variable. In other word,
whether the variable is endogenous or exogenous. The errorcorrection coefficient being significant
confirms our earlier findings of a significant long-run cointegrating relationship between the variables.
Moreover The size of the coefficient of the error-correction term is also indicative of the intensity of the
arbitrage activity to bring about the long-run equilibrium. The error correction coefficient estimated for
variable Islamic banks’ financing at -0.131 (0.0492) is highly significant, has the correct sign and implies
a slow speed of adjustment to equilibrium after a shock. At this stage, we can argue that VECM has given
a clear picture of short and long run relationship among variables.Islamic total islamic bank finance has
been found endogenous which implies the idependence of Islamic bank development on the economic
growth of Malaysia. This result supports the reality as Islamic banks don’t practice what they supposed to do.
ROBUSTNESS OF THE RESULT:
To check the robustness of these conclusions, we extend the short-run analysis by relying on the VAR
approach. This allows us to ensure that our findings are not contingent upon only one approach.
Therefore, the government can make good economic policies and strategies based on the relationship
between Islamic bank financing and economic growth in presence of two banking system in one financial
system, namely conventional banking system and Islamic banking system.
Variance Decomposition (VDC):
The relative exogeneity or endogeneity of a variable can be determined by the proportion of the variance
explained by its own past. The variable that is explained mostly by its own shocks (and not by others) is
deemed to be the most exogenous of all. We started out applying generalized VDCs and obtained the
following results.
Table 8: Variance Decomposition Normalised
Horizon LGDP LGFC LIBF LCPI TOTAL SELF-DEPENDENCE RANK
LGDP 10 42% 49% 3% 6% 100% 42% 1
LGFC 10 38% 18% 41% 2% 100% 18% 2
LIBF 10 8% 19% 10% 63% 100% 10% 3
LCPI 10 23% 60% 7% 10% 100% 10% 4
Horizon LGDP LGFC LIBF LCPI TOTAL SELF-DEPENDENCE RANK
LGDP 20 43% 49% 3% 5% 100% 43% 1
LGFC 20 44% 32% 21% 3% 100% 32% 2
LIBF 20 9% 25% 10% 56% 100% 10% 3
LCPI 20 27% 56% 8% 9% 100% 9% 4
Horizon LGDP LGFC LIBF LCPI TOTAL SELF-DEPENDENCE RANK
LGDP 30 44% 49% 2% 4% 100% 44% 1
LGFC 30 45% 39% 14% 2% 100% 39% 2
LIBF 30 10% 25% 10% 55% 100% 10% 3
LCPI 30 30% 54% 7% 8% 100% 8% 4
Horizon LGDP LGFC LIBF LCPI TOTAL SELF-DEPENDENCE RANK
LGDP 40 45% 49% 2% 4% 100% 45% 1
LGFC 40 45% 41% 12% 2% 100% 41% 2
LIBF 40 11% 25% 10% 54% 100% 10% 3
LCPI 40 32% 54% 6% 8% 100% 8% 4
Horizon LGDP LGFC LIBF LCPI TOTAL SELF-DEPENDENCE RANK
LGDP 50 45% 49% 2% 3% 100% 45% 1
LGFC 50 46% 42% 11% 2% 100% 42% 2
LIBF 50 11% 26% 10% 53% 100% 10% 3
LCPI 50 33% 54% 6% 7% 100% 7% 4
From the table we can see that in 10 quarters horizon, gross domestic product is the most exogenous on
the other hand total Islamic bank financing is the most endogenous. In the 20 quarters horizon, Gross
domestic product is still the most exogenous. More interestingly investment has become more exogenous
in the long run. In the short to long term, consumer price index is becoming more endogenous however
for the case of Islamic banks it tends to remain same in the longer horizon, it’s the case may be due to
quarterly data for shorter period. Most exogenous variable growth however becomes relatively stronger
exogenous in the long run.
IMPULSE RESPONSE FUNCTIONS:
We investigate the short-run dynamics of the variables we consider by using the generalized impulse
response functions that assess the response of a variable to shock in another variable at some time
horizon.
From the analysis of VDC and impulse response (IR), which necessarily shows the same result in
different form, by shocking our target variables mostly investment and growth to identify their effect on
Islamic bank development. We can argue that the result in IR seems to support the findings from VDC;
however, some of them are supported by theory while some of them are counter intuitive.
We can argue that shock in the GDP has more impact on the Islamic bank financing, at the same time in
the long run the GDP of Malaysia is not sensitive to the Islamic financing. Thus the effect of Islamic
finance on the economic growth in the long run is less important than short run. The economic result can
be explained by the structure of the Islamic bank financing that marginalizes the PLS based instruments.
This turns out to be consistent with the economic reality in Malaysia, as the Islamic banks engage more in
non participatory activities whose impact is generally for short run. Therefor it seems that the Malaysian
Islamic banks have not played effectively what they should have done as financial intermediaries. Our
findings also are in line with Hachicha, N., & Ben Amar, A. (2015).
POLICY IMPLICATIONS:
In the last decades, many empirical research studies attempt to investigate how Islamic finance exerts an
impact on economic growth directly or indirectly through some channels. Our findings indicate that the
application of the ARDL approach enhances the understanding of the causal links between Islamic
finance and economic growth for developing economy like Malaysia, provide a demand following
hypothesis where financial development follows economic growth. Here Islamic bank financing as
dependent on the growth of GDP in Malaysia. Economic growth creates a demand for financial
intermediation, thus Islamic financial institutions and services is a response to the demand from investors
and savers in the economy. In this regard economic growth causes Islamic banking institutions to change
and develop. The link is of great interest for economic policy makers, Indeed, the significant relationship
between the variables we consider can help the Malaysian government to make deep economic policies
over the short-run and long-run depending on the causality direction and its magnitude, and on whether
the impact of each variable on the others is positive or negative. Government should take measures to
promote the Islamic financial system through the financial infrastructure. The government should also
support projects to stimulate profitable investment opportunities by improving small investments, and
creating new businesses in productive sectors of the economy. To that effect, the government should have
the policy scheme to increase the long term financing to the private sectors by Islamic banks and Profit
loss sharing activities more. Hence Islamic banks should extend their PLS activities in the rural area in
order to make the macroeconomic stability and to reduce the impact of negative shocks. The authorities
should also create favorable conditions to utilize the Islamic bank financing into productive investment
through, thus creating employment and economic growth opportunities. In this context, the government
should offer incentives such as developed public infrastructure in disadvantaged areas and tax exemption
for new projects during the early years to enhance investment opportunities.
Conclusion:
In this study, the unidirectional relationship between the development of Islamic bank and economic
growth for Malaysia over the period 2006–2014 has been meticulously investigated based on the ARDL
bounds testing approach and by including investment as channel through which the impact is examined.
Our analysis shows absence of Islamic finance growth nexus and instead showed a unidirectional
causality from growth to in the development of Islamic finance. The contribution of Islamic financial
sector is weak. The GDP is not the dependent on the Islamic finance. The variables behave exogenous.
We also find that the causality among the variables depends on whether we are in the short-term or long-
term. As a check of the robustness of the results, alternative methods allow drawing the same conclusions
as the ARLD bounds testing approach, implying that this latter seems to be appropriate for examining the
causal link between the variables we consider. future empirical research works could introduce islamic
capital market and and zakat fund (as it plays significant role in the rural areas unlike the formal financial
channels), indicators to explain and to distinguish the causal impact. In this context, it is also important to
understand how policy makers could address this issue.
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